基于深度强化学习方法的两阶段数据驱动优化能源管理和联网微电网的动态实时运行

IF 5 2区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Electrical Power & Energy Systems Pub Date : 2024-07-18 DOI:10.1016/j.ijepes.2024.110142
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引用次数: 0

摘要

鉴于能源管理中庞大而多样的数据所带来的巨大挑战,本研究引入了一种两阶段方法:优化能源管理系统(OEMS)和动态实时运行(DRTOP)。这两个阶段采用以多代理策略为导向的深度强化学习(DRL)方法,旨在通过联网微电网(NMG)能源市场中的互动,最大限度地降低运营和能源交换成本。主要目标包括最大限度降低配电系统运营商(DSO)成本、优化 DSO 与 NMG 之间的电力交换以及电力传输损耗;次要目标包括最大限度降低 MG 的运营成本、优化使用可再生能源资源(RER)和储能系统(ESS)、最大限度降低与主电网的电力交换成本以及风险分析。OEMS&DRTOP 模型是基于 Stackelberg 博弈论和 DRL 结构开发的。DRL 模型分为离线学习和在线分布式运行两个阶段,以最大限度地减少计算负担、时间和 DRL 运行过程。研究结果表明,所提出的方法在最小化运营成本、基于价格不确定性的交换电量、电力传输损耗以及 RER 和 ESS 的最佳参与方面具有很高的效率。此外,在计算负荷方面,所提出的概念比对决深度 Q 网络法减少了 12.9%,比深度 Q 网络法减少了 17%。同样在计算时间方面,与对决深度 Q 网络方法相比,拟议概念减少了 17.13%,与深度 Q 网络方法相比减少了 25.6%。
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Two-Stage Data-Driven optimal energy management and dynamic Real-Time operation in networked microgrid based deep reinforcement learning approach

Given the significant challenges posed by the vast and diverse data in energy management, this study introduces a two-stage approach: optimal energy management system (OEMS) and dynamic real-time operation (DRTOP). These stages employ a multi-agent policy-oriented deep reinforcement learning (DRL) approach, aiming to minimize operating and energy exchange costs through interactions in the networked microgrid (NMG) energy market. The primary objectives include minimizing the distribution system operator (DSO) cost and optimizing the exchanged power between DSO and NMG, and the power transmission losses and the secondary include minimizing MG’s operating cost, optimal use of renewable energy resources (RER) and energy storage systems (ESS), minimizing the exchanged power cost with the main grid and, risk analysis. The OEMS&DRTOP model is developed based on the Stackelberg game theory and the DRL structure. The DRL model is developed in two offline learning and online distributed operation phases to minimize the computational burden, time, and DRL operation process. This study’s results show the high efficiency of the presented approach to minimizing the operating cost, the exchanged power based on the price uncertainty, power transmission losses, and, RER and ESSs optimal participation. In addition, regarding computational load, the proposed concept demonstrates a 12.9% reduction compared to the dueling deep Q-network method and a 17% reduction compared to the deep Q-network method. Also regarding computational time, the proposed concept demonstrates a 17.13% reduction compared to the dueling deep Q-network method and a 25.6% reduction compared to the deep Q-network method.

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来源期刊
International Journal of Electrical Power & Energy Systems
International Journal of Electrical Power & Energy Systems 工程技术-工程:电子与电气
CiteScore
12.10
自引率
17.30%
发文量
1022
审稿时长
51 days
期刊介绍: The journal covers theoretical developments in electrical power and energy systems and their applications. The coverage embraces: generation and network planning; reliability; long and short term operation; expert systems; neural networks; object oriented systems; system control centres; database and information systems; stock and parameter estimation; system security and adequacy; network theory, modelling and computation; small and large system dynamics; dynamic model identification; on-line control including load and switching control; protection; distribution systems; energy economics; impact of non-conventional systems; and man-machine interfaces. As well as original research papers, the journal publishes short contributions, book reviews and conference reports. All papers are peer-reviewed by at least two referees.
期刊最新文献
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